Premium Only Content

Adversarial Search (Minimax with Alpha-Beta Pruning) - Intro to Artificial Intelligence
The lecture series follows NC State's CSC 411 - Intro to AI with Dr. Adam Gaweda. This lecture is our final lecture in classical AI search - adversarial search. In adversarial search the agent needs to factor in decisions made by another agent, one that will select actions that worsen the original agent's outcome. We do this through minimax by alternating which agent we are modeling. However, minimax alone relies on an exhaustive search which may be an issue when considering algorithm efficiency. To combat this issue we can include alpha-beta pruning to remove searches that would never be considered due to the adversarial agent's decision making process.
Code Examples are only shared with NC State students.
Want to work on them?
Consider joining the Wolfpack at North Carolina State University ncsu.edu/about
-
UPCOMING
Sarah Westall
1 hour agoGlobal Economic Picture Rapidly Changing as Chaos Continues to Drive Uncertainty w/ Nomi Prins
3.6K -
LIVE
The Mike Schwartz Show
2 hours agoTHE MIKE SCHWARTZ SHOW Evening Edtion 10-03-2025
4,010 watching -
1:47:22
iCkEdMeL
2 hours ago $1.49 earnedFlag Burning, Antifa & Arrest: Journalist Nick Sortor Detained in Portland Chaos
6.33K6 -
LIVE
SpartakusLIVE
1 hour ago#1 All-American HERO with LUSCIOUS hair and AVERAGE forehead brings Friday Night HYPE
236 watching -
1:39:27
Roseanne Barr
5 hours agoThe Dragon’s Prophecy W/ Dinesh D’Souza | The Roseanne Barr Podcast #118
110K47 -
28:24
Michael Franzese
4 hours agoHow Jewish Mafia Influenced American Organized Crime
35.6K24 -
LIVE
GritsGG
2 hours agoDuos! Most Wins in WORLD! 3680+!
47 watching -
LIVE
Midnight In The Mountainsâ„¢
1 hour agoActive Matter Game Play | Gaming w/ PER·SE·VER·ANCE | with Midnight & Lady
40 watching -
5:08:55
Dr Disrespect
8 hours ago🔴LIVE - DR DISRESPECT - BABY STEPS - THE VERY VERY LAST CHAPTER
109K11 -
5:26:35
StoneMountain64
6 hours agoBLACK OPS 7 Unlocking Weapons and Overclocks (Mouse and Keyboard Player)
53.9K2